Intelligent Models for Prediction of Compressive Strength of Geopolymer Pervious Concrete Hybridized with Agro-Industrial and Construction-Demolition Wastes
Artikel-Kategorie: Original Study
Online veröffentlicht: 26. Sept. 2024
Seitenbereich: 349 - 376
Eingereicht: 07. Mai 2024
Akzeptiert: 15. Juli 2024
DOI: https://doi.org/10.2478/sgem-2024-0020
Schlüsselwörter
© 2024 Shriram Marathe et al., published by Sciendo
This work is licensed under the Creative Commons Attribution 4.0 International License.
The construction industry stands at a cross-road, facing the dual challenges of meeting global infrastructure demands and mitigating its environmental footprint. Central to this challenge is the industry's reliance on ordinary Portland cement (OPC), the production of which is notably carbon-intensive. Studies have quantified the environmental burden of OPC production, revealing that approximately 0.73–0.85 tonnes of CO2 are emitted for every ton of OPC produced, spotlighting the urgent need for sustainable alternatives in concrete manufacturing[1]. Furthermore, the burgeoning issue of construction waste, alongside the overproduction of industrial by-products like fly ash and slag, necessitates a shift toward sustainable construction methodologies. The world generates billions of tons of construction waste annually, a significant portion of which remains underutilized, contributing to environmental degradation [2]. Geopolymer (GP) and Alkali-Activated Cements (AACs) emerge as a formidable nominee in this framework, offering a viable pathway to curtail the carbon emissions associated with traditional cement[3]. Hence, the GPs emerge as a beacon of sustainability in this landscape, offering a robust framework for recycling and reusing construction and industrial waste. These are synthesized from aluminosilicate materials to proposing a significant reduction in CO2 emissions and also proven to be excelling in mechanical performances and durability aspects compared to OPC-based materials[4]. The global warming potential of GPs is markedly lower primarily due to their synthesis from industrial by-products, thereby circumnavigating the energy-intensive clinker production process inherent in OPC manufacturing [5].
This research pivots on the development of a novel slag-based GP pervious concrete, hybridized with an agro-waste, i.e., sugarcane bagasse ash (SBA) and construction-demolition (C&D) wastes, steering the conversation toward circular economy in construction. The utilization of such waste materials not only addresses the disposal issue but also enhances the sustainability quotient of the concrete produced. SBA, an agricultural by-product, and C&D wastes, typically viewed as landfill fodder, are thus valorized, contributing to waste minimization and resource efficiency. Soft computing models stand at the forefront of this research, offering a nuanced approach to predicting and optimizing the mechanical properties of these novel concrete mixtures. By integrating machine learning (ML) techniques, this study aims to refine the prediction accuracy of the concrete's strength, providing a robust framework for the application of these materials in real-world scenarios. This computational approach aligns with the emphasis on innovative applications of computing in civil engineering, heralding a new era of data-driven material science.
The urgency to transition to sustainable construction practices is further amplified by the dire warnings of climate scientists. The alarming trajectory of global warming, exacerbated by the construction sector's carbon emissions, necessitates a paradigm shift toward materials that reduce the carbon footprint. GPs present a promising solution in this regard, offering a sustainable alternative to OPC by harnessing the latent hydraulic properties of industrial by-products. GPs not only contribute to the reduction of CO2 emissions but also promise enhancements in the material properties of concrete, including superior mechanical strength and durability, fostering the advancement of green construction materials [6]. Hence, this research underscores the imperative for innovative, sustainable construction materials, with a particular focus on GP pervious concrete enhanced with industrial and agricultural wastes. By incorporating advanced computational models with sustainable material science, this study aims to contribute significantly to the field, offering insights and methodologies that align with the urgent call for environmental stewardship in construction practices. Moreover, the prediction of the mechanical properties of any type of GP pervious concretes is considered very much challenging due to the complex interactions between its heterogeneous components, including various types of industrial by-products and the specific conditions required for the alkali-activation. This work contributes by leveraging ML to unstitch these intricate relationships, offering a more accurate, efficient predictive approach. Hence, this research directly addresses the challenge by utilizing data-driven models to forecast pervious GPC's behavior, thereby guiding the optimization of sustainable concretes. Through this endeavor, the study also addresses a critical gap in the current literature and lays down a clear pathway for future research in sustainable construction materials, resonating with the global agenda for sustainable development and climate resilience.
The advent of GPC/AAC represents a significant leap toward sustainable construction practices, aligning with the global impetus to reduce the environmental footprint of the building industry. This novel material, synthesized from industrial by-products, would effectively not only addresses the urgent need to repurpose waste but also offers enhanced mechanical properties and durability compared to traditional Portland cement. The integration of such soft computing models offers a novel paradigm to address complex, nonlinear problems inherent in the concrete research, ranging from mix design optimization to performance prediction under various conditions. Hence, these advanced models facilitate a deeper understanding of the complex interplay between GPC's compositional variables and its mechanical attributes, enabling the optimization of mix designs for tailored applications. As the construction sector continues to evolve, the fusion of materials science and computational intelligence heralds a new era of innovation, where the accelerated design and deployment of high-performance, eco-friendly materials become a tangible reality.
Thematic Categorization of Selected Soft Computing Models Used in AAC/GPC Research.
[7] | ANN | Effectively predicted the strength variation due to molar concentration changes in activator solutions with R2 values over 0.96 | Predicting strength with the use of 70% results for training and 30% sample results for testing | Further refine ANN models to enhance predictive accuracy |
[8] | GEP | Developed numerical models to predict GGBS-based GPC strength, demonstrating high accuracy and validation with R2 values ranging from 0.97 to 0.99 | Compressive strength prediction of GGBS-based GPC with the use of 351 samples | Expand GEP models to include more variables influencing GPC properties |
[9] | GEP | Predict the compressive strength of bacteria-incorporated GPC, showing minimal error against experimental data | Modeling compressive strength of bacteria-incorporated GPC | Explore GEP's application in other GPC types with different admixtures |
[10] | RFR and GEP | RFR and GEP were applied to develop empirical models predicting fly-ash GPC strength, where RFR showed better performance through statistical error checks | Strength prediction of GPC using advanced soft computing methods developed through 298 datasets | Compare these models against other ML techniques for broader applicability |
[11] | AI tools | AI techniques like GP, RVM, and GPR showed high accuracies in predicting GPC strength with R2 values in the range of 0.93–0.99 | AI-assisted mix-design tool for GPC | Test these AI models in real-world mix-design scenarios for validation |
[12] | GEP | GEP provided an empirical equation for GPC strength prediction using FA, showing good model accuracy and generalization capability | Estimating GPC compressive strength using GEP developed through 298 datasets | Enhance the GEP model by incorporating more diverse datasets |
[13] | ANN, RSM, and GEP | Comparative analysis of ANN, RSM, and GEP showed RSM and ANN outperformed GEP in accuracy for predicting the strength of engineered GP composite (EGC) | Predictive modeling of EGC compressive strength. The RSM showed 96% accuracy, whereas the ANN had 93% | Improve GEP models or explore hybrid approaches for better prediction in EGC |
[14] | ML | Ensembled ML techniques, particularly AdaBoost and random forest, outperformed individual methods in predicting GPC strength, and the R2 values of 0.90 for ensemble methods were obtained. | Applying ML for strength prediction of GP composites; AdaBoost and random forest showed superior predictions | Further explore the potential of ensembling techniques in predictive accuracy improvement |
[15] | ANN, M5P-Tree, LR, and MLR | ANN model excelled in predicting the compressive strength of GGBS/FA-based GPC, showcasing its potential over other models | Compressive strength prediction for GPCcompositesdeveloped through 220 datasets | Enhance model reliability with broader datasets and explore real-time prediction capabilities |
[16] | ANN | ANN models showed promise in predicting strength characteristics of AAC masonry blocks, with significant accuracy in training and validation phases | Strength prediction for alkali-activated masonry blocks developed through 108 datasets | Validate ANN models in diverse AAC formulations and structural applications |
[17] | GEP | GEP demonstrated high accuracy in predicting the compressive strength of FRGC, supporting its use in optimizing concrete mixes; R2 values in the range of 0.97–0.99 indicating GEP's robust performance and reliability | Predictive modeling for fiber-reinforced geopolymer concrete (FRGC)developed through 393 datasets | Apply GEP in broader FRGC applications and investigate other fiber types and contents |
[5] | ANN, MPR, and SA-LR | Utilized ANN and advanced regression techniques for predicting the performance of high-strength GPC, focusing on sustainable and cost-effective solutions | Optimization of high-performance GPC mixes, with the use of 81 sample data | Extend analysis to include long-term performance and durability predictions |
[18] | NSGA-II and BPNN | Introduced a multi-objective optimization approach using NSGA-II and BPNN for geopolymer mix design, balancing mechanical, environmental, and economic factors; R2 and other statistical tests were used for validation | Mix design optimization for fly ash-based GPC mixes, with the use of 896 sample data | Expand optimization frameworks to incorporate additional environmental and durability criteria |
[19] | LR, ANN, and AdaBoost | AdaBoost model showcased superior prediction accuracy with the highest R2 value for the compressive strength of FlA-based GPC compared to conventional machine learning models | Enhancing predictive accuracy for FlA-based GPC strength | Investigate AdaBoost's application in predicting other relevant concrete properties |
[20] | SVR and GWO | The study applied SVR combined with GWO to predict the compressive strength of GGBFS-based geopolymer concrete, showing high accuracy and potential for optimization; R2 value for SVR-GWO was 0.95 | Prediction of compressive strength for GGBFS-based GPC developed through 268 datasets | Explore the integration of GWO with other predictive models for enhanced optimization and prediction |
[21] | LSTM | Employed LSTM to forecast the compressive strength of FAGC, introducing a novel approach with optimized LSTM parameters for better prediction accuracy | Compressive strength prediction in FAGC using LSTM developed using 162 datasets | Further refine LSTM models and explore their application in real-time monitoring and control of GPC properties |
[22] | XGB and SVM | The study compared XGB and SVM for predicting the slumpand strength of AAC, finding XGB to perform significantly better with higher R2 values (respective R2 values of 0.94 and 0.97 for slump and strength), providing a robust tool for AAC mix design | Slump and compressive strength prediction in AAC with a total of 193 datasets | Investigate the applicability of XGB in broader contexts of AAC production and other performance parameters |
To identify which soft computing method was determined to be the best across the reported studies, one would typically look for the method that consistently showed high accuracy, low error rates, and good generalization capabilities across different datasets. From the summarized details shown in
The previous studies have extensively explored individual soft computing techniques for predicting compressive strength of GPC/AAC mixes. The exploration of such models in the scope of the study represents a promising frontier, particularly when these materials are integrated with sustainability-enhancing components like agro-industrial wastes. The literature studies strongly reveal a burgeoning interest in optimizing GPC properties through advanced computational techniques, yet a discernible gap persists in the specific domain of
Hence, the current investigation seeks to bridge this gap by focusing on pervious geopolymer concretes enhanced with the utilization of specific agro-waste material and industrial by-products, thereby pushing the boundaries of sustainability in construction materials. Moreover, the integration of soft computing models to predict and optimize the unique properties of these novel concretes represents an innovative approach that melds computational intelligence with sustainable material science. By addressing these gaps, this research outcome will strongly contribute to the academic discourse that paves the way for practical advancements in sustainable construction, promoting enhanced environmental stewardship and resource efficiency in the industry. Hence, under the broad scope of soft computing, the present investigation specifically includes comparisons of four established and less used ML models. These are Multiple Linear Regression, Gradient Boost, AdaBoost, and, XGBoost Regressions. Total of 156 datasets have been studied, which are cautiously developed in the sophisticated laboratory.
The detailed literature review focusing on the reported literatures on soft computing in similar concretes was also carried out to find out the performance of various models. Furthermore, an ensemble technique that combines the predictions from multiple ML algorithms together to make more accurate predictions than any individual model was also developed. The performance of the developed models was evaluated through the statistical score values, including root mean squared error (RMSE), mean absolute error (MAE), mean squared error (MSE), R2 score, and coefficient of variation (CV) mean, and the overall comparison of the models were made. Generalized flow diagram showcasing the soft-computing scope of the article is presented in

Flowchart showing the experimentation and development of soft computing models.
The iron and steel industry by-product in the ground form (Ground Granulated Blas Furnace Slag, i.e., GGBS) is used as a major binder, and agro-waste, called sugarcane bagasse ash (AWA, i.e., SBA), was used as a substitute to binder at different levels. The GGBS was characterized by a specific gravity of 2.89 and a fineness of 360 m2/kg, containing major chemical oxides such as 38.12% silica (i.e., SiO2), 36.89% lime (i.e., CaO), 14.52% alumina (i.e., Al2O3), 7.60% magnesium oxide (i.e., MgO), and 1.15% iron oxide (i.e., Fe2O3). Whereas the SBA was tested with a specific gravity of 2.49 and a fineness of 462 m2/kg, comprised with 59.28% silica, 16.08% alumina, 8.10% lime, 5.85% iron oxide, and 4.80% magnesium oxide.
Two types of coarse aggregates were utilized in this study: naturally crushed granite coarse aggregates (NCA) and recycled coarse aggregates (RCA) sourced from demolished building materials, with respective specific gravities of 2.68 and 2.53. Given the nature of pervious concrete, which requires minimal fine aggregate, the coarse to fine aggregate ratio was consistently maintained at 9:1 throughout research. Additionally, waste foundry sand (WFS), an industrial by-product from the metal casting industry, was engaged as the fine aggregate, exhibiting a specific gravity of 2.56. All mechanical testing on the aggregates was carried out in accordance with relevant standards [23,24,25,26]. The results of particle size distribution of all these ingredients are presented in

Particle size distribution of binder materials and aggregates.
The mix design for geopolymer pervious concrete was developed following the basic guidelines outlined in IRC: 44-2017 [27], aiming for a low-slump concrete (<25 mm) with a target compressive strength of 20 MPa. This design was adapted to create a slag-based geopolymer concrete (GPC) mix, leveraging insights from previous studies [3,28]. A satisfactory mix was achieved with 290 kg of total binding material (GGBS) per cubic meter of concrete and a water-to-binder (w/b) ratio of 0.40. The mix maintained a minimum percolation rate of 300 mm per minute, corresponding to a Darcy's coefficient of permeability of 5.0 cm/s. The total water content in the activator solution combined water from the liquid sodium silicate (LSS) solution with additional water to achieve the desired water content. Alkali activator solutions (AS) were tailored for each mix to provide a 4% Na2O dosage by binder weight, with a consistent activator modulus (Ms value) of 1.25. Tap water was used to produce the aqueous-alkali solution.
Initially, GGBS served as the primary binder, with systematic replacements by SBA ranging from 0% to 20% in 5% increments. To optimize the level of RCA, adjustments were made from 0% to 100% in place of NCA. Based on testing, mixes with 0% and 50% RCA were further adjusted for SBA content. This approach resulted in 13 distinct mix designs, which is detailed in
Mix Proportion Details for 1 m3 Geopolymer Pervious Concrete Preparations in kg.
M-0-0 | 290 | 0 | 6.583 | 44.207 | 92.791 | 143.58 | 1881.3 | 0 | 199.7 |
M-0-25 | 290 | 0 | 6.583 | 44.207 | 92.791 | 143.58 | 1411.03 | 444.01 | 199.7 |
M-0-50 | 290 | 0 | 6.583 | 44.207 | 92.791 | 143.58 | 940.68 | 888.03 | 199.7 |
M-0-75 | 290 | 0 | 6.583 | 44.207 | 92.791 | 143.58 | 470.34 | 1332.05 | 199.7 |
M-0-100 | 290 | 0 | 6.583 | 44.207 | 92.791 | 143.58 | 0 | 1776.07 | 199.7 |
M-5-0 | 275.5 | 14.5 | 6.583 | 44.207 | 92.791 | 143.58 | 1878.13 | 0 | 199.3 |
M-10-0 | 261 | 29 | 6.583 | 44.207 | 92.791 | 143.58 | 1874.89 | 0 | 198.9 |
M-15-0 | 246.5 | 43.5 | 6.583 | 44.207 | 92.791 | 143.58 | 1871.65 | 0 | 198.6 |
M-20-0 | 232 | 58 | 6.583 | 44.207 | 92.791 | 143.58 | 1868.42 | 0 | 198.3 |
M-5-50 | 275.5 | 14.5 | 6.583 | 44.207 | 92.791 | 143.58 | 939.065 | 886.505 | 199.3 |
M-10-50 | 261 | 29 | 6.583 | 44.207 | 92.791 | 143.58 | 937.45 | 884.98 | 198.9 |
M-15-50 | 246.5 | 43.5 | 6.583 | 44.207 | 92.791 | 143.58 | 935.83 | 883.45 | 198.6 |
M-20-50 | 232 | 58 | 6.583 | 44.207 | 92.791 | 143.58 | 934.21 | 881.92 | 198.3 |

Preparation, air-curing, and testing sequence of geopolymer pervious concrete specimens.
ML algorithms are highly capable of integrating a variety of complex parameters, including material properties, mix design, environmental conditions, and curing processes, which all influence the final strength of concrete. This predictive capability of ML is proven to be crucial for the optimization of the material mix and ensuring the structural integrity with sustainability in construction projects without the need for extensive physical trial and error, which can be costly and time-consuming. Hence, utilizing ML allows for a more accurate and efficient analysis of the parameters, thereby improving the predictability of concrete's performance characteristics [32,33].

Model architecture flow diagram of the soft computing adopted in the current investigation.
Specifically, multiple linear regression, Gradient Boost, AdaBoost, and, XGBoost Regressions are applied. Brief details on every individual ML models are presented under the following section:
Hence, for this work, the ensemble integrated the predictive capabilities of all the four specific models, i.e., MLR, GBR, ABR (tuned), and XGBR (tuned). The corresponding weights assigned to each model in the voting mechanism were carefully calibrated based on their predictive performance: 0.40 for the MLR model, 0.10 for both the GBR and XGBR models, and 0.80 for the ABR model. This weighted averaging approach is expected to optimally balance the individual strengths of each model, leading to a superior collective prediction capability that outperforms any single model in the ensemble. This strategy is particularly effective in reducing variance and bias, thereby improving the robustness of predictive outcomes in complex datasets.
In the present study, six input parameters (namely, GGBS, AWA, AAS, NCA, RCA, WFS) and a single output parameter (i.e., CS) are considered. The details of the mixes were given in quite detail and are clearly presented in
In the validation of developed ML models designed to predict the CS, several key performance metrics are utilized to assess model accuracy and reliability.
Lastly, the

Average compressive strength and hydraulic conductivity of trial pervious GPC mixes.

Corelation matrix showing the affiliation of individual parameters with the other parameters.

Pearson's correlation coefficients between the parameters.
This study's exploration into pervious GPC mixes has demarcated a clear trend in the compressive strength(CS) and hydraulic conductivity (i.e., permeability) dependent on material proportions. The inclusion of up to 10% SBA as a replacement for the chief binder GGBS has led to an approximate 16% increase in compressive strength. This enhancement highlights the pozzolanic reactivity of SBA in the matrix. However, further increasing the SBA content beyond this threshold resulted in a decline in strength, suggesting an optimal threshold for SBA incorporation. Conversely, the substitution of NCA with C&D aggregates (RCA) markedly reduced compressive strength. At 100% replacement with RCA, the strength decreased by approximately 42%, underscoring the significant impact of aggregate quality on the mechanical properties of concretes [39]. This reduction in strength with an increased RCA content is offset by enhanced permeability, indicating a trade-off between structural strength and permeability, which are the major hardened properties for pervious concretes and are central to this investigation. Other fresh and hardened properties are not reported in this study. It is clear from the results that the mixes with higher strength have low permeability due to fewer voids. Many researchers revealed that the permeable concrete composite mixes with lower permeability values lead to a higher strength [40,41]. This is evident from the results obtained in laboratory research. As the finer particles of aggregates fill the gaps between various-sized coarse aggregates, the permeable mixes become denser. This increase in fine aggregate content also increases the surface area of the aggregates and reduces the average pore diameter size. As a result, water ingress is reduced, providing greater resistance to the flow of water. This ultimately leads to a decrease in the coefficient of permeability value of the permeable composite mixes [42].
These phenomena are visually summarized in
The diversity and breadth of training data are crucial for the robustness of ML models, particularly when developing predictive models for concrete compressive strength. A comprehensive dataset, representative of varied conditions in practical settings, is essential for this purpose [34]. In this study, which explores an under-researched area, data for 156 pervious GPC mix formulations were meticulously collected through controlled laboratory experiments. These mixes were air-cured under standard conditions, and the dataset compiled includes six input variables reflecting the mix components and one output variable, which is the compressive strength measured from 100 mm side cube specimens. The nomenclature and units of these variables are detailed in
The CS was ascertained using conventional standard testing methods.
Expressive statistics of the dependent and independent variables.
kg | 156 | 268.16 | 21.56 | 232.00 | 246.5 | 275.5 | 290.0 | 290.0 | |
kg | 156 | 21.85 | 21.56 | 0.0 | 0.00 | 14.5 | 43.5 | 58.0 | |
kg | 156 | 143.59 | - | 143.58 | 143.6 | 143.6 | 143.6 | 143.58 | |
kg | 156 | 1230.18 | 601.67 | 0.00 | 935.8 | 940.7 | 1871.7 | 1881.3 | |
kg | 156 | 610.13 | 569.48 | 0.00 | 0.00 | 881.9 | 886.5 | 1776.1 | |
kg | 156 | 199.14 | 0.5321 | 198.30 | 198.6 | 199.3 | 199.7 | 199.7 | |
MPa | 156 | 27.73 | 5.544 | 14.96 | 24.37 | 27.79 | 31.2 | 39.81 |

Actual vs predicted compressive strength results from ML models.

Results of RMSE and R2 values of developed ML models.
The Pearson correlation coefficient (ρxy) has a value range from -1.0 to +1.0. Higher ρxy values suggest a well-built linear relationship impacting the output parameter. A coefficient of -01 indicates a contrary correlation, while the value ”0” suggests that the variables may be uncorrelated or have a nonlinear relationships, as Pearson's method only detects
As clearly portrayed in
These statistical relationships emphasize the material trade-offs, particularly in sustainable construction paradigms where the use of recycled materials must be balanced against strength performance imperatives. Hence, this approach was considered critical for effectively identifying potential influences and dependencies that could affect the predictive accuracy of the ML models employed in this study [44].
Also, from the mix design
In this formula, Xn denotes the feature normalized data, with Xmin representing the smallest and Xmax the largest values of the inputs. X corresponds to the individual original data before normalization. This technique benefits the model development process by expediting calculations and enhancing the accuracy and robustness of the predictive model.
Input Data after Feature Standardization.
1.02 | −1.02 | - | 0.29 | −0.28 | 1.06 |
0.32 | −0.32 | - | −0.51 | 0.51 | 0.28 |
−1.76 | 1.76 | - | 1.06 | −1.07 | −1.66 |
−0.37 | 0.37 | - | 1.07 | −1.07 | −0.49 |
−0.372 | 0.37 | - | −0.51 | 0.51 | −0.49 |
The
Furthermore, every model's performance metrics (such as RMSE, MAE, and R2 score) would quantitatively complement these visual insights. Lower RMSE and MAE values, alongside a R2 score close to 1, would support the visual elucidations of the models' effectiveness in predicting the strength values.
The key ML model statistical parameters obtained after scrutinizing the efficacy of various ML models applied to predict the CS of pervious GPC are presented in
Results on Machine Learning Models Applied on Input Data with the Performance Metrics
1.64 | 1.63 | 1.59 | 1.64 | 1.52 | |
1.28 | 1.30 | 1.26 | 1.30 | 1.21 | |
2.70 | 2.70 | 2.51 | 2.70 | 2.32 | |
0.83 | 0.91 | 0.86 | 0.88 | 0.90 | |
−0.14 | −0.74 | −0.91 | −0.79 | −0.11 |
The results of
These statistics indicate a strong model fit in training, although with a slight reduction in the test phase, hinting at potential overfitting issues or the need for further parameter tuning. XGBR, an optimized gradient boosting library, shows an RMSE of 1.64 in training and 1.79 in testing, with R2 of 0.88 and 0.88. The increase in RMSE for the test data suggests that this model may not generalize as well as others, although the consistent R2 indicates a stable prediction of variance across both datasets. Finally, the VR model, an ensemble of the aforementioned models, registers the lowest RMSE of 1.52 and 1.59 for the training and test datasets, respectively, and an R2 of 0.88 and 0.90. The VR's performance indicates that it effectively combines the strengths of the individual models, balancing out their weaknesses and thereby providing more reliable predictions. The consistent improvement in RMSE and R2 across both datasets underscores the robustness of the ensemble approach[45].
In order to critically evaluate these models, we must consider both RMSE and R2 in tandem. RMSE offers a clear indication of the average magnitude of the model's errors, with lower values signifying more accurate predictions. R2 provides insight into the proportion of the variance for the dependent variable that's captured by the model. Together, these metrics illustrate the models' predictive accuracy and their ability to generalize to novel, concealed data. Overall, while each model has its merits, the VR model emerged as the most effective, leveraging the collective power of multiple algorithms to enhance predictive accuracy. The analysis reveals that the choice of model can significantly influence the performance and reliability of CS predictions for pervious GPCs.
The juxtaposition of figures under

Results showing the errors in predicted vs actual values of compressive strength from the testing dataset.

Results showing the feature score of the ML models for compressive strength.
Comparatively, the VR model demonstrates much closer alignment between predicted and actual values, suggesting an enhanced predictive performance. This result is attributable to the weighted aggregation of predictions from multiple models, which mitigates individual model biases and leverages collective intelligence. Occasional peaks and troughs suggest that while certain samples may pose a greater challenge in prediction, the model's overall performance remains unfalteringly high. Over fine-tuning, the VR model's accuracy and reliability, as visually depicted in this plot, mark a promising advancement in the domain of soft computing applications within material science, showcasing a method that could be pivotal in future engineering innovations.
Conversely,
For instance, NCA and RCA appear to have substantial impacts, as demonstrated in their coefficient magnitudes across models. The discrepancy between the influence of NCA and RCA underscores the complexity of incorporating varying aggregate types and the nuanced effects on concrete properties. Hence, through the integration of the insights from both figures, it is apparent that while individual ML models offer valuable predictions, the ensemble approach in VR provides a more robust and accurate predictive performance. This consolidates the premise that in the realm of complex material interactions in GPC formulations, ensemble ML models are paramount in harnessing the predictive power of soft computing techniques. The disparity between the coefficients of features across models further corroborates the necessity of considering multiple models to capture the heterogeneity of influential factors on the compressive strength of the composite under consideration. Overall, these analyses clearly prove that while individual factors can significantly impact the CS, the integration of multiple ML models into an ensemble framework like VR can significantly enhance the accuracy and reliability of predictions for pervious GPCs.

Results of predicted values and actual values from the ensemble
Moreover, the model's robustness is evident from the distribution spread, where both predicted and real values exhibit similar variance, reinforcing the model's credibility. The similarity in the tail lengths of both distributions further illustrates that extreme values, whether high or low, are accurately anticipated by this ML model [35]. Hence, the VR model's capacity to generalize well, indicated by the high degree of similarity between the density plots of predicted and actual values, lays the groundwork for its application in optimizing the mix design for improved pervious GPC performances, thus opening avenues for future developments in material technology and computational modeling in this field.
Hence, this investigation exemplifies how integrating multiple ML techniques can substantially benefit predictive modeling in sustainable construction engineering contexts, offering a vigorous tool for designing better-performing geopolymer concretes for sustainable future. These encapsulated findings effectively provide a compelling narrative on the application of advanced ML methodology to improve the understanding and prediction of material properties in civil engineering research. Overall, the developed ML models effectively persuade all the indispensable conditions for all the dependent variables, which clearly shows that the developed ML models are proficient enough to predict the most-important strength of the pervious geopolymer concrete mixes.
This study presented a comprehensive investigation into the performance of pervious GPC hybridized with agro-industrial wastes (GGBS, SBA, and WFS) and C&D wastes, employing advanced soft computing techniques for CS prediction. The experimentation involved creating 13 distinct GPC mixes with varying percentages of SBA and RCA content and analyzing their effects on the 28-day strength and hydraulic conductivity. These properties were considered to be vital as they directly relate to the structural integrity and functionality of pervious concretes. The experimental results elucidated a significant enhancement in compressive strength with up to 10% inclusion of SBA, after which the strength gradually decreased. This finding highlights the optimal use of SBA in enhancing the geopolymer matrix's strength due to its pozzolanic activity up to a certain dosages. Conversely, increasing the proportion of RCA negatively impacted the compressive strength due to the poorer quality of C&D aggregates compared to fresh crushed granite. However, the increased RCA content improved the hydraulic conductivity, indicating a beneficial aspect for permeable concrete applications obliging higher permeability. Furthermore, the application of multiple linear regression, gradient boost, AdaBoost, XGBoost regressions, and an ensemble model using a Voting Regressor effectively modeled the compressive strength of GPC. Among these, the AdaBoost Tuned model and the ensemble approach emerged as superior, providing robust predictions with lower error rates, demonstrating the effectiveness of combining multiple predictive models to enhance prediction accuracy. The present investigation effectively confirms that the leveraging advancements in soft computing models can significantly contribute to the sustainable development of construction materials, aligning with global sustainability goals by reducing industrial waste and enhancing material properties.
Future researchers on the topic may have the possibility to explore further the balance between mechanical properties and environmental benefits in GPC by integrating other types of industrial and agricultural waste products such as copper slag, rice husk ash, and fly-ash. There is also an opportunity to refine the ML models by incorporating more comprehensive datasets that include additional environmental and operational variables affecting composite performances. Furthermore, long-term durability studies under various environmental conditions could provide deeper insights into the practical applications and limitations of these materials. Also, expanding the scope to include fresh concrete properties and other mechanical parameters could offer a more holistic view of the material characteristics. Further studies could also focus on scaling up the production process and evaluating the economic viability of pervious GPC in commercial applications.